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Order Estimation of Computational Models for Dynamic Systems with application to Biomedical Signals

机译:应用于生物医学信号的动态系统计算模型的顺序估算

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Parametric models, in particular Autoregressive Moving Average (ARMA) models and their affiliates, are widely used in computational models of biomedical signals to fit a model to a recorded time series. An important step in this system identification process is the estimation of the model order. This paper provides the results of a systematic study of a previously developed technique based on the eigenvalues of the data covariance matrix to estimate the order of univariate ARMA models. A modified model order selection criterion which gives more robust results is used and the effect of the pole-zero positions on the correcdy identified model orders is highlighted. Furthermore, the approach is extended to allow for the model order estimation of univariate Autoregressive (AR) and Moving Average (MA) models.
机译:参数模型,特别是自回归移动普通(ARMA)模型及其关联体,广泛应用于生物医学信号的计算模型,以将模型适合于录制的时间序列。该系统识别过程中的一个重要步骤是估计模型顺序。本文提供了基于数据协方差矩阵的特征值来估算单变量ARMA模型的顺序的先前开发技术的系统研究结果。使用修改的模型订单选择标准,提供了更强大的结果,并突出显示了对识别的模型订单上的极值零位置的效果。此外,该方法扩展以允许单变量自回归(AR)和移动平均(MA)模型的模型顺序估计。

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